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Deep Cauchy Hashing for Hamming Space Retrieval

机译:深柯西散列用于汉明空间检索

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Due to its computation efficiency and retrieval quality, hashing has been widely applied to approximate nearest neighbor search for large-scale image retrieval, while deep hashing further improves the retrieval quality by end-to-end representation learning and hash coding. With compact hash codes, Hamming space retrieval enables the most efficient constant-time search that returns data points within a given Hamming radius to each query, by hash table lookups instead of linear scan. However, subject to the weak capability of concentrating relevant images to be within a small Hamming ball due to mis-specified loss functions, existing deep hashing methods may underperform for Hamming space retrieval. This work presents Deep Cauchy Hashing (DCH), a novel deep hashing model that generates compact and concentrated binary hash codes to enable efficient and effective Hamming space retrieval. The main idea is to design a pairwise cross-entropy loss based on Cauchy distribution, which penalizes significantly on similar image pairs with Hamming distance larger than the given Hamming radius threshold. Comprehensive experiments demonstrate that DCH can generate highly concentrated hash codes and yield state-of-the-art Hamming space retrieval performance on three datasets, NUS-WIDE, CIFAR-10, and MS-COCO.
机译:由于其计算效率和检索质量,散列已广泛应用于大规模最近图像的近似最近邻搜索,而深度散列通过端到端表示学习和散列编码进一步提高了检索质量。使用紧凑的哈希码,汉明空间检索实现了最有效的恒定时间搜索,该查询通过哈希表查找而非线性扫描将给定汉明半径内的数据点返回给每个查询。然而,由于由于错误指定的损失函数而导致将相关图像集中在小汉明球中的能力较弱,现有的深哈希方法对于汉明空间检索可能表现不佳。这项工作介绍了深度柯西散列(DCH),这是一种新颖的深散列模型,该模型生成紧凑且集中的二进制散列码,以实现高效的汉明空间检索。主要思想是基于柯西分布设计成对的交叉熵损失,该损失对汉明距离大于给定汉明半径阈值的相似图像对有重大影响。全面的实验表明,DCH可以生成高度集中的哈希码,并可以在NUS-WIDE,CIFAR-10和MS-COCO这三个数据集上产生最新的汉明空间检索性能。

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